Drug repositioning holds great promise because it can reduce the time and cost of new drug development. While drug repositioning can omit various R&D processes, confirming pharmacological effects on biomolecules is essential for application to new diseases. Biomedical explainability in a drug repositioning model can support appropriate insights in subsequent in-depth studies. However, the validity of the XAI methodology is still under debate, and the effectiveness of XAI in drug repositioning prediction applications remains unclear. In this study, we propose GraphIX, an explainable drug repositioning framework using biological networks, and quantitatively evaluate its explainability. GraphIX first learns the network weights and node features using a graph neural network from known drug indication and knowledge graph that consists of three types of nodes (but not given node type information): disease, drug, and protein. Analysis of the post-learning features showed that node types that were not known to the model beforehand are distinguished through the learning process based on the graph structure. From the learned weights and features, GraphIX then predicts the disease-drug association and calculates the contribution values of the nodes located in the neighborhood of the predicted disease and drug. We hypothesized that the neighboring protein node to which the model gave a high contribution is important in understanding the actual pharmacological effects. Quantitative evaluation of the validity of protein nodes' contribution using a real-world database showed that the high contribution proteins shown by GraphIX are reasonable as a mechanism of drug action. GraphIX is a framework for evidence-based drug discovery that can present to users new disease-drug associations and identify the protein important for understanding its pharmacological effects from a large and complex knowledge base.
翻译:虽然药物重新定位可以省略各种研发过程,但确认生物分子对生物分子的药理学影响是新疾病应用的关键。药物重新定位模型的生物医学解释可以支持随后深入研究的适当见解。然而,XAI方法的有效性仍在辩论之中,而XAI在药物重新定位预测应用方面的有效性仍然不明确。在本研究中,我们提议使用生物网络来解释药物重新定位框架GapIX,这是一个可以解释的药物重新定位框架,并定量地评估其可解释性。GapIX首先从已知的神经网络和知识图中学习网络的网络重量和节点特征,这包括三种类型的节点(但不提供节点类型信息):疾病、药物和蛋白质。对后期研究特征的分析表明,根据基于图表结构的学习过程,XAI将已知的节点类型区别开来区分。根据所了解的重量和特征,GaprixIX然后预测疾病-药物协会,并计算出其节点的正确值值值的值值值值值,来自已知的神经神经网络和知识的已知度和知识, 其预测的深度数据库显示的深度对药物和直径界的正确度,其预测的正确值的正确值基础表明,它所显示的正确度对药物和直系的正确度的正确度的正确度的正确度对药物的正确度的正确度的正确度对药物的正确度对临床作用,即是预测的正确度的正确度的正确度的正确度的正确度的正确度对临床的正确度对临床的正确度对临床的正确度对临床的正确度对临床的正确度对临床的正确度对临床的正确度,这是一种解释。